The grading of crushed aggregate is carried out usually by sieving. We describe a new image-based approach to the automatic
grading of such materials. The operational problem addressed is where the camera is located directly over a conveyor belt.
Our approach characterizes the information content of each image, taking into account relative variation in the pixel data,
and resolution scale. In feature space, we find very good class separation using a multidimensional linear classifier. The
innovation in this work includes (i) introducing an effective image-based approach into this application area, and (ii) our
supervised classification using wavelet entropy-based features.
Keywords Machine vision - Aggregate - Construction - Wavelet transform - Entropy - Information - Image database